一种用于脉冲神经系统的改进GPU模拟器

F. Cabarle, H. Adorna, Miguel A. Martínez-del-Amor
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引用次数: 8

摘要

脉冲神经P (SNP)系统是P系统的变体(在膜和自然计算下),是一种从神经元“计算”或处理信息的方式中获得抽象和灵感的计算模型。与其他P系统变体类似,SNP系统是图灵完全模型,其本质上是不确定的,并且以最大程度的并行方式进行计算。P系统通常用(通常是指数)空间换取(多项式到常数)时间。由于这种性质,P系统变体目前仅限于并行模拟,并且已经在并行设备中模拟了几种变体。本文提出了一种改进的基于图形处理器(gpu)的SNP系统模拟器。除其他原因外,当前的gpu是为大规模并行计算而构建的,因此使得gpu非常适合SNP系统仿真。给出了计算模型、硬件/软件考虑和仿真算法,并对基于CPU和基于CPU- gpu的仿真器进行了比较。
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An Improved GPU Simulator for Spiking Neural P Systems
Spiking Neural P (SNP) systems, variants of Psystems (under Membrane and Natural computing), are computing models that acquire abstraction and inspiration from the way neurons 'compute' or process information. Similar to other P system variants, SNP systems are Turing complete models that by nature compute non-deterministically and in a maximally parallel manner. P systems usually trade (often exponential) space for (polynomial to constant) time. Due to this nature, P system variants are currently limited to parallel simulations, and several variants have already been simulated in parallel devices. In this paper we present an improved SNP system simulator based on graphics processing units (GPUs). Among other reasons, current GPUs are architectured for massively parallel computations, thus making GPUs very suitable for SNP system simulation. The computing model, hardware/software considerations, and simulation algorithm are presented, as well as the comparisons of the CPU only and CPU-GPU based simulators.
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